New Data Warehousing Strategies for Big Data

New Data Warehousing Strategies for Big Data

Some of the characteristics that make big data so "big" are that it is often too large for a standalone database server to process, and many sources of unstructured data, such as social media sites and web logs, do not always work best with traditional relational databases. To combat these issues, many organizations dealing with big data employ data warehousing strategies that are scale-out models, built around open-source technologies like Hadoop or NoSQL. However, this shift in data warehousing does not come without its challenges.

In this expert e-guide, learn about the difficulties associated with new big data warehousing techniques and how to overcome them, the role that distributed computing plays in big data management, how to avoid pitfalls like management oversight, and much more.

This phone number format is not recognized. Please check the country and number.

You have exceeded the maximum character limit.

By submitting my Email address I confirm that I have read and accepted the Terms of Use and Declaration of Consent.

By submitting your personal information, you agree to receive emails regarding relevant products and special offers from TechTarget and its partners. You also agree that your personal information may be transferred and processed in the United States, and that you have read and agree to the Terms of Use and the Privacy Policy.

It can be tempting to stray from the security roadmap security professionals have put in place when data breaches like the Sony and Anthem breaches are all over the news. But experts say it's crucial to stick to the security basics.